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A parameter estimation scheme for damped sinusoidal signals based on low-rank Hankel approximation

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3 Author(s)
Li, Y. ; Dept. of Electr. Eng., Maryland Univ., College Park, MD, USA ; Liu, K.J.R. ; Razavilar, J.

Most of the existing algorithms for parameter estimation of damped sinusoidal signals are based only on the low-rank approximation of the prediction matrix and ignore the Hankel property of the prediction matrix. We propose a modified Kumaresan-Tufts (MKT) algorithm exploiting both rank-deficient and Hankel properties of the prediction matrix. Computer simulation results demonstrate that compared with the original Kumaresan-Tufts (1982) algorithm and the matrix pencil algorithm, the MKT algorithm has a lower noise threshold and can estimate the parameters of signal with larger damping factors

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Signal Processing, IEEE Transactions on  (Volume:45 ,  Issue: 2 )